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Diagnosing client faults using SVM-based intelligent inference from TCP packet traces

机译:使用基于TCP数据包跟踪的基于SVM的智能推断诊断客户端故障

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摘要

We present the Intelligent Automated Client Diagnostic (IACD) system, which only relies on inference from Transmission Control Protocol (TCP) packet traces for rapid diagnosis of client device problems that cause network performance issues. Using soft-margin Support Vector Machine (SVM) classifiers, the system (i) distinguishes link problems from client problems, and (ii) identifies characteristics unique to client faults to report the root cause of the client device problem. Experimental evaluation demonstrated the capability of the IACD system to distinguish between faulty and healthy links and to diagnose the client faults with 98% accuracy in healthy links. The system can perform fault diagnosis independent of the client's specific TCP implementation, enabling diagnosis capability on diverse range of client computers.
机译:我们介绍了智能自动客户端诊断(IACD)系统,该系统仅依赖于传输控制协议(TCP)数据包跟踪的推断来快速诊断引起网络性能问题的客户端设备问题。使用软边际支持向量机(SVM)分类器,系统(i)将链路问题与客户端问题区分开,并且(ii)识别客户端故障所独有的特征,以报告客户端设备问题的根本原因。实验评估证明了IACD系统能够区分故障链路和正常链路,并能够以正常链路98%的准确度诊断客户端故障。该系统可以独立于客户端的特定TCP实现执行故障诊断,从而在各种客户端计算机上实现诊断功能。

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